In this paper, we study mid-cap companies, i.e. publicly traded companies with less than US $10 billion in market capitalisation. Using a large dataset of US mid-cap companies observed over 30 years, we look to predict the default probability term structure over the medium term and understand which data sources (i.e. fundamental, market or pricing data) contribute most to the default risk. Whereas existing methods typically require that data from different time periods are first aggregated and turned into cross-sectional features, we frame the problem as a multi-label time-series classification problem. We adapt transformer models, a state-of-the-art deep learning model emanating from the natural language processing domain, to the credit ri...
The accurate prediction of corporate bankruptcy for the firms in different industries is of a great ...
In the literature of predicting corporate default, it is an ad-hoc process to select the predictors ...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...
In this paper, we study mid-cap companies, i.e. publicly traded companies with less than US$10 billi...
This thesis identifies the optimal set of corporate default drivers and examines the prediction perf...
PURPOSE: The purpose of this paper is to assess and compare the forecast ability of existing credit ...
[EN] We employ a sample of 10,136 Italian micro-, small-, and mid-sized enterprises (MSMEs) that bor...
The unprecedented financial crisis of 2008-2009 has called attention to limitations of existing meth...
This paper examines the determinants of Credit Default Swap premia. It also explores the use of Mach...
This cumulative dissertation aims to address key challenges in the area of credit risk management th...
This paper attempts to evaluate the predictive ability of three default prediction models: the marke...
Every publicly traded company in the US is required to file an annual 10-K financial report, which c...
Theoretical thesis."Department of Applied Finance and Actuarial Studies, Faculty of Business and Eco...
Predicting corporate bankruptcy is one of the fundamental tasks in credit risk assessment. In partic...
We apply machine-learning techniques to construct nonlinear nonparametric forecasting models of cons...
The accurate prediction of corporate bankruptcy for the firms in different industries is of a great ...
In the literature of predicting corporate default, it is an ad-hoc process to select the predictors ...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...
In this paper, we study mid-cap companies, i.e. publicly traded companies with less than US$10 billi...
This thesis identifies the optimal set of corporate default drivers and examines the prediction perf...
PURPOSE: The purpose of this paper is to assess and compare the forecast ability of existing credit ...
[EN] We employ a sample of 10,136 Italian micro-, small-, and mid-sized enterprises (MSMEs) that bor...
The unprecedented financial crisis of 2008-2009 has called attention to limitations of existing meth...
This paper examines the determinants of Credit Default Swap premia. It also explores the use of Mach...
This cumulative dissertation aims to address key challenges in the area of credit risk management th...
This paper attempts to evaluate the predictive ability of three default prediction models: the marke...
Every publicly traded company in the US is required to file an annual 10-K financial report, which c...
Theoretical thesis."Department of Applied Finance and Actuarial Studies, Faculty of Business and Eco...
Predicting corporate bankruptcy is one of the fundamental tasks in credit risk assessment. In partic...
We apply machine-learning techniques to construct nonlinear nonparametric forecasting models of cons...
The accurate prediction of corporate bankruptcy for the firms in different industries is of a great ...
In the literature of predicting corporate default, it is an ad-hoc process to select the predictors ...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...